IoTFlowGenerator: Crafting Synthetic IoT Device Traffic Flows for Cyber Deception

Joseph Bao, Murat Kantaciourglu, Yevgeniy Vorobeychik, Charles Kamhoua
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Abstract

Over the years, honeypots emerged as an important security tool to understand attacker intent and deceive attackers to spend time and resources. Recently, honeypots are being deployed for Internet of things (IoT) devices to lure attackers, and learn their behavior. However, most of the existing IoT honeypots, even the high interaction ones, are easily detected by an attacker who can observe honeypot traffic due to lack of real network traffic originating from the honeypot. This implies that, to build better honeypots and enhance cyber deception capabilities, IoT honeypots need to generate realistic network traffic flows. To achieve this goal, we propose a novel deep learning based approach for generating traffic flows that mimic real network traffic due to user and IoT device interactions.A key technical challenge that our approach overcomes is scarcity of device-specific IoT traffic data to effectively train a generator.We address this challenge by leveraging a core generative adversarial learning algorithm for sequences along with domain specific knowledge common to IoT devices.Through an extensive experimental evaluation with 18 IoT devices, we demonstrate that the proposed synthetic IoT traffic generation tool significantly outperforms state of the art sequence and packet generators in remaining indistinguishable from real traffic even to an adaptive attacker.
IoTFlowGenerator:为网络欺骗制作合成物联网设备流量
多年来,蜜罐作为一种重要的安全工具出现,用于了解攻击者的意图并欺骗攻击者花费时间和资源。最近,蜜罐被部署在物联网(IoT)设备上,以引诱攻击者并学习他们的行为。然而,现有的大多数物联网蜜罐,即使是高交互的蜜罐,由于缺乏来自蜜罐的真实网络流量,很容易被攻击者发现,攻击者可以观察到蜜罐流量。这意味着,为了构建更好的蜜罐并增强网络欺骗能力,物联网蜜罐需要生成真实的网络流量。 为了实现这一目标,我们提出了一种新的基于深度学习的方法来生成流量流,该流量流模拟了由于用户和物联网设备交互而产生的真实网络流量。我们的方法克服的一个关键技术挑战是缺乏设备特定的物联网流量数据来有效地训练生成器。我们通过利用序列的核心生成对抗学习算法以及物联网设备常见的领域特定知识来解决这一挑战。通过对18个物联网设备的广泛实验评估,我们证明了所提出的合成物联网流量生成工具显着优于最先进的序列和数据包生成器,即使对于自适应攻击者也无法与真实流量区分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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